scholarly journals Automated Extraction of Diagnostic Criteria From Electronic Health Records for Autism Spectrum Disorders: Development, Evaluation, and Application

10.2196/10497 ◽  
2018 ◽  
Vol 20 (11) ◽  
pp. e10497 ◽  
Author(s):  
Gondy Leroy ◽  
Yang Gu ◽  
Sydney Pettygrove ◽  
Maureen K Galindo ◽  
Ananyaa Arora ◽  
...  
2018 ◽  
Author(s):  
Gondy Leroy ◽  
Yang Gu ◽  
Sydney Pettygrove ◽  
Maureen K Galindo ◽  
Ananyaa Arora ◽  
...  

BACKGROUND Electronic health records (EHRs) bring many opportunities for information utilization. One such use is the surveillance conducted by the Centers for Disease Control and Prevention to track cases of autism spectrum disorder (ASD). This process currently comprises manual collection and review of EHRs of 4- and 8-year old children in 11 US states for the presence of ASD criteria. The work is time-consuming and expensive. OBJECTIVE Our objective was to automatically extract from EHRs the description of behaviors noted by the clinicians in evidence of the diagnostic criteria in the Diagnostic and Statistical Manual of Mental Disorders (DSM). Previously, we reported on the classification of entire EHRs as ASD or not. In this work, we focus on the extraction of individual expressions of the different ASD criteria in the text. We intend to facilitate large-scale surveillance efforts for ASD and support analysis of changes over time as well as enable integration with other relevant data. METHODS We developed a natural language processing (NLP) parser to extract expressions of 12 DSM criteria using 104 patterns and 92 lexicons (1787 terms). The parser is rule-based to enable precise extraction of the entities from the text. The entities themselves are encompassed in the EHRs as very diverse expressions of the diagnostic criteria written by different people at different times (clinicians, speech pathologists, among others). Due to the sparsity of the data, a rule-based approach is best suited until larger datasets can be generated for machine learning algorithms. RESULTS We evaluated our rule-based parser and compared it with a machine learning baseline (decision tree). Using a test set of 6636 sentences (50 EHRs), we found that our parser achieved 76% precision, 43% recall (ie, sensitivity), and >99% specificity for criterion extraction. The performance was better for the rule-based approach than for the machine learning baseline (60% precision and 30% recall). For some individual criteria, precision was as high as 97% and recall 57%. Since precision was very high, we were assured that criteria were rarely assigned incorrectly, and our numbers presented a lower bound of their presence in EHRs. We then conducted a case study and parsed 4480 new EHRs covering 10 years of surveillance records from the Arizona Developmental Disabilities Surveillance Program. The social criteria (A1 criteria) showed the biggest change over the years. The communication criteria (A2 criteria) did not distinguish the ASD from the non-ASD records. Among behaviors and interests criteria (A3 criteria), 1 (A3b) was present with much greater frequency in the ASD than in the non-ASD EHRs. CONCLUSIONS Our results demonstrate that NLP can support large-scale analysis useful for ASD surveillance and research. In the future, we intend to facilitate detailed analysis and integration of national datasets.


Medical Care ◽  
2017 ◽  
Vol 55 (10) ◽  
pp. e73-e80 ◽  
Author(s):  
Zhe Tian ◽  
Simon Sun ◽  
Tewodros Eguale ◽  
Christian M. Rochefort

2016 ◽  
Vol 15 (3) ◽  
pp. e353
Author(s):  
S-R. Leyh-Bannurah ◽  
P. Dell'Oglio ◽  
Z. Tian ◽  
M. Graefen ◽  
H. Huland ◽  
...  

2020 ◽  
Author(s):  
Ky'Era V. Actkins ◽  
Kritika Singh ◽  
Donald Hucks ◽  
Digna R. Velez Edwards ◽  
Melinda Aldrich ◽  
...  

Context: Polycystic ovary syndrome (PCOS) is one of the leading causes of infertility, yet current diagnostic criteria are ineffective at identifying patients whose symptoms reside outside strict diagnostic criteria. As a result, PCOS is under diagnosed and its etiology is poorly understood. Objective: We aim to characterize the phenotypic spectrum of PCOS clinical features within and across racial and ethnic groups. Methods: We developed a strictly defined PCOS algorithm (PCOSregex-strict) using International Classification of Diseases, 9th and 10th edition (ICD9/10) and regular expressions mined from clinical notes in electronic health records (EHRs) data. We then systematically relaxed the inclusion criteria to evaluate the change in epidemiological and genetic associations resulting in three subsequent algorithms (PCOScoded-broad, PCOScoded-strict, PCOSregex-broad). We evaluated the performance of each phenotyping approach and characterized prominent clinical features observed in racially and ethnically diverse PCOS patients. Results: The best performing algorithm was our PCOScoded-strict algorithm with a positive predictive value (PPV) of 98%. Individuals classified as cases by this algorithm had significantly higher body mass index (BMI), insulin levels, free testosterone values, and genetic risk scores for PCOS, compared to controls. Median BMI was higher in African American women with PCOS compared to White and Hispanic women with PCOS. Conclusions: PCOS symptoms are observed across a severity spectrum that parallels genetic burden. Racial and ethnic group differences exist in PCOS symptomology and metabolic health across different phenotyping strategies.


2021 ◽  
Vol LIII (1) ◽  
pp. 91-93
Author(s):  
Vladimir D. Mendelevich

The article analyzes the scientific foundations set out in the book by V.E. Pashkovsky 10 lectures on autism. It is noted that the author expresses his own point of view on autism and does not agree with the position of the World Health Organization and the world psychiatric community on the diagnostic criteria and treatment strategies for autism spectrum disorders. If on the issue of the peculiarities of diagnostics, the authors arguments can be recognized as admissible, since the diagnosis in modern psychiatry reflects the consensus of specialists, then some provisions of V.E. Pashkovsky on the topic of the validity of the use of antipsychotics (neuroleptics) for the treatment of patients with autism should be considered as undocumented and misleading specialists.


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